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Segmentation of ultrasound images by using a hybrid neural network

机译:使用混合神经网络分割超声图像

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A hybrid neural network is presented for the segmentation of ultrasound images. Feature vectors are formed by the discrete cosine transform of pixel intensities in region of interest(ROI). The Elements and the dimension of the feature vectors are determined by considering only two parameters: The amount of Ignored coefficients, and the dimension of the ROI. First-layer-nodes of the proposed hybrid network represent hyperspheres(HSs) in the feature space. Feature space is Partitioned by intersecting these HSs to represent the distribution of classes. The locations and radii of the HSs are Found by the genetic algorithms. Restricted Coulomb energy(RCE) network, modified RCE network, multi-layer perceptron and the proposed Hybrid neural network are examined comparatively for the segmentation of ultrasound images.
机译:提出了一种混合神经网络,用于超声图像的分割。特征向量是通过感兴趣区域(ROI)中像素强度的离散余弦变换形成的。仅通过考虑两个参数来确定特征向量的元素和维:忽略系数的量和ROI的维。所提出的混合网络的第一层节点代表特征空间中的超球体(HS)。通过相交这些HS来划分特征空间,以表示类的分布。 HS的位置和半径通过遗传算法找到。比较了受限库仑能量(RCE)网络,改进的RCE网络,多层感知器和拟议的混合神经网络对超声图像的分割。

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